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Oil-filled Power Transformers Fault Diagnosis based on fuzzy-DRNN

机译:油填充电力变压器基于模糊DRNN的故障诊断

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In recent years, improved three-ratio is an effective method for transformer fault diagnosis based on Dissolved Gas Analysis (DGA). In this paper, a simple dynamic neural network named as diagonal recurrent neural network (DRNN) is used to resolve the online fault diagnosis problems for oil-filled power transformer based on DGA. Because of the characteristic of improved three-ratio boundary is lack of matching, fuzzy logic in fault diagnosis is presented also to deal with the data of the neural network inputs. DRNN is used to model the fault diagnosis structure, the fuzzy logic is used to improve the faults diagnose reliability. In addition, some cases are used to show the capability of the suggested method in oil-filled power transformers fault diagnosis.
机译:近年来,改进的三比例是基于溶解气体分析(DGA)的变压器故障诊断的有效方法。在本文中,使用名为对角线复发性神经网络(DRNN)的简单动态神经网络来解决基于DGA的充油电力变压器的在线故障诊断问题。由于改进的三比边界的特征是缺乏匹配的,因此还呈现了故障诊断中的模糊逻辑,还可以处理神经网络输入的数据。 DRNN用于模拟故障诊断结构,模糊逻辑用于改善故障诊断可靠性。此外,某些情况用于显示充电电力变压器故障诊断中的建议方法的能力。

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